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Plug and Play Autoencoders for Conditional Text Generation

2020-10-06 19:18:06
Florian Mai (1 and 2), Nikolaos Pappas (3), Ivan Montero (3), Noah A. Smith (3 and 4), James Henderson (1) ((1) Idiap Research Institute, (2) EPFL, (3) University of Washington, (4) Allen Institute for Artificial Intelligence)

Abstract

Text autoencoders are commonly used for conditional generation tasks such as style transfer. We propose methods which are plug and play, where any pretrained autoencoder can be used, and only require learning a mapping within the autoencoder's embedding space, training embedding-to-embedding (Emb2Emb). This reduces the need for labeled training data for the task and makes the training procedure more efficient. Crucial to the success of this method is a loss term for keeping the mapped embedding on the manifold of the autoencoder and a mapping which is trained to navigate the manifold by learning offset vectors. Evaluations on style transfer tasks both with and without sequence-to-sequence supervision show that our method performs better than or comparable to strong baselines while being up to four times faster.

Abstract (translated)

URL

https://arxiv.org/abs/2010.02983

PDF

https://arxiv.org/pdf/2010.02983.pdf


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